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Construct Dynamic Graphs for Hand Gesture Recognition via Spatial-Temporal Attention
Yuxiao Chen; Long Zhao; Xi Peng; Jianbo Yuan; Dimitris N. Metaxas

Abstract
We propose a Dynamic Graph-Based Spatial-Temporal Attention (DG-STA) method for hand gesture recognition. The key idea is to first construct a fully-connected graph from a hand skeleton, where the node features and edges are then automatically learned via a self-attention mechanism that performs in both spatial and temporal domains. We further propose to leverage the spatial-temporal cues of joint positions to guarantee robust recognition in challenging conditions. In addition, a novel spatial-temporal mask is applied to significantly cut down the computational cost by 99%. We carry out extensive experiments on benchmarks (DHG-14/28 and SHREC'17) and prove the superior performance of our method compared with the state-of-the-art methods. The source code can be found at https://github.com/yuxiaochen1103/DG-STA.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| hand-gesture-recognition-on-dhg-14 | DG-STA | Accuracy: 91.9 |
| hand-gesture-recognition-on-dhg-28 | DG-STA | Accuracy: 88 |
| hand-gesture-recognition-on-shrec-2017 | DG-STA | 14 Gestures Accuracy: 94.4 28 Gestures Accuracy: 90.7 |
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